How to Design Reinforcement Learning Methods for the Edge: An Integrated Approach toward Intelligent Decision Making

Author:

Wu Guanlin12ORCID,Zhang Dayu1ORCID,Miao Zhengyuan3,Bao Weidong1ORCID,Cao Jiang2

Affiliation:

1. Laboratory for Big Data and Decision, National University of Defense Technology, Changsha 410073, China

2. Academy of Military Science of the PLA, Beijing 100850, China

3. Nanhu Laboratory, Jiaxing 314002, China

Abstract

Extensive research has been carried out on reinforcement learning methods. The core idea of reinforcement learning is to learn methods by means of trial and error, and it has been successfully applied to robotics, autonomous driving, gaming, healthcare, resource management, and other fields. However, when building reinforcement learning solutions at the edge, not only are there the challenges of data-hungry and insufficient computational resources but also there is the difficulty of a single reinforcement learning method to meet the requirements of the model in terms of efficiency, generalization, robustness, and so on. These solutions rely on expert knowledge for the design of edge-side integrated reinforcement learning methods, and they lack high-level system architecture design to support their wider generalization and application. Therefore, in this paper, instead of surveying reinforcement learning systems, we survey the most commonly used options for each part of the architecture from the point of view of integrated application. We present the characteristics of traditional reinforcement learning in several aspects and design a corresponding integration framework based on them. In this process, we show a complete primer on the design of reinforcement learning architectures while also demonstrating the flexibility of the various parts of the architecture to be adapted to the characteristics of different edge tasks. Overall, reinforcement learning has become an important tool in intelligent decision making, but it still faces many challenges in the practical application in edge computing. The aim of this paper is to provide researchers and practitioners with a new, integrated perspective to better understand and apply reinforcement learning in edge decision-making tasks.

Funder

National Natural Science Foundation of China

Postgraduate Scientific Research Innovation Project of Hunan Province

Publisher

MDPI AG

Reference156 articles.

1. Reinforcement learning: A survey;Kaelbling;J. Artif. Intell. Res.,1996

2. Sutton, R.S., and Barto, A.G. (2018). Reinforcement Learning: An Introduction, MIT Press.

3. Reinforcement learning;Wiering;Adapt. Optim.,2012

4. Deadline-aware deep-recurrent-q-network governor for smart energy saving;Zhou;IEEE Trans. Netw. Sci. Eng.,2021

5. Yang, Y., and Wang, J. (2020). An overview of multi-agent reinforcement learning from game theoretical perspective. arXiv.

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